Adaptive therapy for ovarian cancer: An integrated approach to PARP inhibitor scheduling

Author:

Strobl MaximilianORCID,Martin Alexandra L.,West JeffreyORCID,Gallaher JillORCID,Robertson-Tessi MarkORCID,Gatenby RobertORCID,Wenham RobertORCID,Maini PhilipORCID,Damaghi MehdiORCID,Anderson AlexanderORCID

Abstract

AbstractToxicity and emerging drug resistance are important challenges in PARP inhibitor (PARPi) treatment of ovarian cancer. Recent research has shown that evolutionary-inspired treatment algorithms which adapt treatment to the tumor’s treatment response (adaptive therapy) can help to mitigate both. Here, we present a first step in developing an adaptive therapy protocol for PARPi treatment by combining mathematical modelling and wet-lab experiments to characterize the cell population dynamics under different PARPi schedules. Using data fromin vitroIncucyte Zoom time-lapse microscopy experiments and a step-wise model selection process we derive a calibrated and validated ordinary differential equation model, which we then use to test different plausible adaptive treatment schedules. Our model can accurately predict thein vitrotreatment dynamics, even to new schedules, and suggests that treatment modifications need to be carefully timed, or one risks losing control over tumour growth, even in the absence of any resistance. This is because our model predicts that multiple rounds of cell division are required for cells to acquire sufficient DNA damage to induce apoptosis. As a result, adaptive therapy algorithms that modulate treatment but never completely withdraw it are predicted to perform better in this setting than strategies based on treatment interruptions. Pilot experimentsin vivoconfirm this conclusion. Overall, this study contributes to a better understanding of the impact of scheduling on treatment outcome for PARPis and showcases some of the challenges involved in developing adaptive therapies for new treatment settings.

Publisher

Cold Spring Harbor Laboratory

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